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Insurance Data Governance Leader for Regulatory & AI

PwC UK
City of London
1 day ago
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A leading professional services firm is seeking an experienced Insurance Data Governance - Senior Manager to support clients in navigating regulatory complexities and improving data practices. The role involves developing data strategies, enhancing operational capabilities with AI, and building long-term client relationships. Candidates should possess substantial knowledge of regulatory frameworks, data governance, and a background in consulting within the insurance sector. This full-time position is based in London.
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